Fr. 158.00

Technology Mining - Text Analytics for Evidence-Based Foresight

English · Hardback

Will be released 25.01.2026

Description

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Tech mining is text-oriented analytics that supports decision-making in science, technology, and innovation (ST&I) policy and management in areas including competitive technical intelligence, R&D management, and research evaluation. Presenting selected papers from the 12th Global TechMining Conference (GTM2022), this book covers novel digital information sources such as optimization and integration of 360-degree view in science, economic, political, and social domains; processing methods that accelerate and optimize procedures involving human expertise, such as Delphi; and visualizations and other outputs such as data visualization to provide better communication of research findings. 
Technology Mining: Text-Analytics for Evidence-Based Foresight is an essential guide for a cross-disciplinary network of ST&I policy analysts, software specialists, researchers, technology managers, and students to further advance and adopt textual information in multiple scientific, technology, and business development fields.

List of contents

Data: Maximizing the Potential of Traditional and Novel Data.- Methods: Advancing and Integrating Methods.- Applications: Innovative Analyses Translating to Useful Intelligence.

About the author

Henrique Rego Monteiro da Hora, Ph.D., is a Professor and Deputy Coordinator of the Master in Systems Applied to Engineering and Management (SAEG) program at IFFluminense, and CEO of TEC Campos Incubadora, a technology-based multi-institutional business incubator. He received a BSc in Informatics and an MBA in Production & Systems from CEFET-Campos, an MSc in Industrial Engineering from Universidade Estadual do Norte Fluminense, and his Ph.D. In Industrial Engineering from Universidade Federal Fluminense. His research interests include management of technology transfer, market pull and technology push innovation, decision science, data analytics, technological prospecting, and entrepreneurship and innovation.

Alan Porter, Ph.D., is Director of R&D for Search Technology, Inc., Norcross, GA, producers of VantagePoint and Derwent Data Analyzer software.  He is also Professor Emeritus of Industrial & Systems Engineering, and of Public Policy, at Georgia Tech, wherehe is Co-director of the Program in Science, Technology & Innovation Policy (STIP). Dr. Porter is the author or co-author of some 260 articles and the author or editor of 17 books, including
Anticipating Future Innovation Pathways Through Large Data Analysis
(Springer, 2016),
Tech Mining
(Wiley, 2005) and
Forecasting and Management of Technology
(Wiley, 2011). He co-founded the International Association for Impact Assessment and later served as president. His research interests are focused on developing indicators of technological emergence (with current NSF support).  
 
Denise Chiavetta is a Senior Consultant at Search Technology, Inc., Norcross, GA, a strategy, innovation, and foresight consulting firm. She brings expertise in organizational applications of technology foresight developed over 20 years as a consultant as well as a professional inside Fortune 100 companies and government agencies. She received a BS in Electrical Engineering from Clarkson University and an MS in Studies of the Future from the University of Houston-Clear Lake.

Summary

Tech mining is text-oriented analytics that supports decision-making in science, technology, and innovation (ST&I) policy and management in areas including competitive technical intelligence, R&D management, and research evaluation. Presenting selected papers from the 12th Global TechMining Conference (GTM2022), this book covers novel digital information sources such as optimization and integration of 360-degree view in science, economic, political, and social domains; processing methods that accelerate and optimize procedures involving human expertise, such as Delphi; and visualizations and other outputs such as data visualization to provide better communication of research findings. 

Technology Mining: Text-Analytics for Evidence-Based Foresight
is an essential guide for a cross-disciplinary network of ST&I policy analysts, software specialists, researchers, technology managers, and students to further advance and adopt textual information in multiple scientific, technology, and business development fields.

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